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File Systems and Databases

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Title: File Systems and Databases


1
Chapter 1
File Systems and Databases
Database Systems Design, Implementation,
and Management, 4th Edition Peter Rob Carlos
Coronel
2
Introducing the Database
  • Major Database Concepts
  • Data and information
  • Data - Raw facts
  • Information - Processed data
  • Data management
  • Database
  • Metadata
  • Database management system (DBMS)

3
Sales per Employee for Each of ROBCORS Two
Divisions
Figure 1.1
4
Introducing the Database
  • Importance of DBMS
  • It helps make data management more efficient and
    effective.
  • Its query language allows quick answers to ad hoc
    queries.
  • It provides end users better access to more and
    better-managed data.
  • It promotes an integrated view of organizations
    operations -- big picture.
  • It reduces the probability of inconsistent data.

5
The DBMS Manages the Interaction Between the End
User and the Database
Figure 1.2
6
Introducing the Database
  • Why Database Design Is Important?
  • A well-designed database facilitates data
    management and becomes a valuable information
    generator.
  • A poorly designed database is a breeding ground
    for uncontrolled data redundancies.
  • A poorly designed database generates errors that
    lead to bad decisions.

7
Historical Roots
  • Why Study File Systems?
  • It provides historical perspective.
  • It teaches lessons to avoid pitfalls of data
    management.
  • Its simple characteristics facilitate
    understanding of the design complexity of a
    database.
  • It provides useful knowledge for converting a
    file system to a database system.

8
Contents of the CUSTOMER File
Figure 1.3
9
Table 1.1 Basic File Terminology
10
Contents of the AGENT File
Figure 1.4
11
A Simple File System
Figure 1.5
12
File System Critique
  • File System Data Management
  • File systems require extensive programming in a
    third-generation language (3GL).
  • As the number of files expands, system
    administration becomes difficult.
  • Making changes in existing file structures is
    important and difficult.
  • Security features to safeguard data are difficult
    to program and usually omitted.
  • Difficulty to pool data creates islands of
    information.

13
File System Critique
  • Structural and Data Dependence
  • Structural Dependence
  • A change in any files structure requires the
    modification of all programs using that file.
  • Data Dependence
  • A change in any files data characteristics
    requires changes in all data access programs.
  • Significance of data dependence is the difference
    between the data logical format and the data
    physical format.
  • Data dependence makes file systems extremely
    cumbersome from a programming and data management
    point of view.

14
File System Critique
  • Field Definitions and Naming Conventions
  • A good (flexible) record definition anticipates
    reporting requirements by breaking up fields into
    their components.
  • Example
  • Customer Name ? Last Name, First Name, Initial
  • Customer Address ? Street Address, City, State

15
File System Critique
  • Field Definitions and Naming Conventions
  • Selecting proper field names is very important.
  • Names must be as descriptive as possible within
    restrictions.
  • Naming must reflect designers documentation
    needs and users reporting and processing
    requirements.

16
File System Critique
  • Data Redundancy
  • Uncontrolled data redundancy sets the stage for
  • Data Inconsistency (lack of data integrity)
  • Data anomalies
  • Modification anomalies
  • Insertion anomalies
  • Deletion anomalies

17
Figure 1.6
18
The Database System Environment
Figure 1.7
Figure 1.7
19
Database Systems
  • The Database System Components
  • Hardware
  • Computer
  • Peripherals
  • Software
  • Operating systems software
  • DBMS software
  • Applications programs and utilities software

20
Database Systems
  • The Database System Components
  • People
  • Systems administrators
  • Database administrators (DBAs)
  • Database designers
  • Systems analysts and programmers
  • End users
  • Procedures
  • Instructions and rules that govern the design and
    use of the database system
  • Data
  • Collection of facts stored in the database

21
Database Systems
  • The Database System Components
  • The complexity of database systems depends on
    various organizational factors
  • Organizations size
  • Organizations function
  • Organizations corporate culture
  • Organizational activities and environment
  • Database solutions must be cost effective AND
    strategically effective.

22
Database Systems
  • Types of Database Systems
  • Number of Users
  • Single-user
  • Desktop database
  • Multiuser
  • Workgroup database
  • Enterprise database
  • Scope
  • Desktop
  • Workgroup
  • Enterprise

23
Database Systems
  • Types of Database Systems
  • Location
  • Centralized
  • Distributed
  • Use
  • Transactional (Production)
  • Decision support
  • Data warehouse

24
Database Systems
  • DBMS Functions
  • 1. Data Dictionary Management
  • 2. Data Storage Management
  • 3. Data Transformation and Presentation
  • 4. Security Management
  • 5. Multi-User Access Control
  • 6. Backup and Recovery Management
  • 7. Data Integrity Management
  • 8. Database Access Languages (DDL and DML) and
    Application Programming Interfaces
  • 9. Database Communication Interfaces

25
Database Models
  • A database model is a collection of logical
    constructs used to represent the data structure
    and the data relationships found within the
    database.
  • Two Categories of Database Models
  • Conceptual models focus on the logical nature of
    the data representation. They are concerned with
    what is represented rather than how it is
    represented.
  • Implementation models place the emphasis on how
    the data are represented in the database or on
    how the data structures are implemented.

26
Database Models
  • Three Types of Relationships
  • One-to-many relationships (1M)
  • A painter paints many different paintings, but
    each one of them is painted by only that painter.
  • PAINTER (1) paints PAINTING (M)
  • Many-to-many relationships (MN)
  • An employee might learn many job skills, and each
    job skill might be learned by many employees.
  • EMPLOYEE (M) learns SKILL (N)
  • One-to-one relationships (11)
  • Each store is managed by a single employee and
    each store manager (employee) only manages a
    single store.
  • EMPLOYEE (1) manages STORE (1)

27
Database Models
  • Three Types of Implementation Database Models
  • Hierarchical database model
  • Network database model
  • Relational database model

28
A Hierarchical Structure
Figure 1.8
29
Database Models
  • Hierarchical Database Model
  • Basic Structure
  • Collection of records logically organized to
    conform to the upside-down tree (hierarchical)
    structure.
  • The top layer is perceived as the parent of the
    segment directly beneath it.
  • The segments below other segments are the
    children of the segment above them.
  • A tree structure is represented as a hierarchical
    path on the computers storage media.

30
Database Models
  • Hierarchical Database Model
  • Advantages
  • Conceptual simplicity
  • Database security
  • Data independence
  • Database integrity
  • Efficiency dealing with a large database
  • Disadvantages
  • Complex implementation
  • Difficult to manage
  • Lacks structural independence
  • Applications programming and use complexity
  • Implementation limitations
  • Lack of standards

31
Child with Multiple Parents
Figure 1.9
32
Database Models
  • Network Database Model
  • Basic Structure
  • Set -- A relationship is called a set. Each set
    is composed of at least two record types an
    owner (parent) record and a member (child)
    record.
  • A set is represents a 1M relationship between
    the owner and the member.

33
A Network Database Model
Figure 1.10
34
Database Models
  • Network Database Model
  • Advantages
  • Conceptual simplicity
  • Handles more relationship types
  • Data access flexibility
  • Promotes database integrity
  • Data independence
  • Conformance to standards
  • Disadvantages
  • System complexity
  • Lack of structural independence

35
Database Models
  • Relational Database Model
  • Basic Structure
  • RDBMS allows operations in a human logical
    environment.
  • The relational database is perceived as a
    collection of tables.
  • Each table consists of a series of row/column
    intersections.
  • Tables (or relations) are related to each other
    by sharing a common entity characteristic.
  • The relationship type is often shown in a
    relational schema.
  • A table yields complete data and structural
    independence.

36
Linking Relational Tables
Figure 1.11
37
Database Models
  • Relational Database Model
  • Advantages
  • Structural independence
  • Improved conceptual simplicity
  • Easier database design, implementation,
    management, and use
  • Ad hoc query capability (SQL)
  • Powerful database management system
  • Disadvantages
  • Substantial hardware and system software overhead
  • Possibility of poor design and implementation
  • Potential islands of information problems

38
A Relational Schema
Figure 1.12
39
Database Models
  • Entity-Relationship Data Model
  • It is one of the most widely accepted graphical
    data modeling tools.
  • It graphically represents data as entities and
    their relationships in a database structure.
  • It complements the relational data model concepts.

40
Database Models
  • Entity Relationship Data Model
  • Basic Structure
  • E-R models are normally represented in an entity
    relationship diagram (ERD).
  • An entity is represented by a rectangle.
  • Each entity is described by a set of attributes.
    An attribute describes a particular
    characteristics of the entity.
  • A relationship is represented by a diamond
    connected to the related entities.

41
Figure 1.13 Relationship Depiction The ERD
42
Figure 1.14 Relationship Depiction The Crows
Foot
43
Database Models
  • Entity-Relationship Data Model
  • Advantages
  • Exceptional conceptual simplicity
  • Visual representation
  • Effective communication tool
  • Integrated with the relational database model
  • Disadvantages
  • Limited constraint representation
  • Limited relationship representation
  • No data manipulation language
  • Loss of information content

44
Database Models
  • Object-Oriented Database Model
  • Characteristics
  • An object is described by its factual content.
  • An object includes information about
    relationships between the facts within the
    object, as well as with other objects.
  • An object is a self-contained building block for
    autonomous structures.

45
Database Models
  • Object-Oriented Database Model
  • Basic Structure
  • Objects are abstractions of real-world entities
    or events.
  • Attributes describe the properties of an object.
  • Objects that share similar characteristics are
    grouped in classes.
  • A class is a collection of similar objects with
    shared structure (attributes) and behavior
    (methods).
  • Classes are organized in a class hierarchy.
  • An object can inherit the attributes and methods
    of the classes above it.

46
A Comparison The OO Data Model and the ER Model
Figure 1.15
47
Database Models
  • Object-Oriented Database Model
  • Advantages
  • Add semantic content
  • Visual presentation includes semantic content
  • Database integrity
  • Both structural and data independence
  • Disadvantages
  • Lack of OODM standards
  • Complex navigational data access
  • Steep learning curve
  • High system overhead slows transactions

48
The Development of Data Models
Figure 1.16
49
Wrap-Up The Evolution of Data Models
  • Common characteristics required for data models
  • A data model must show some degree of conceptual
    simplicity without compromising the semantic
    completeness.
  • A data model must represent the real world as
    closely as possible.
  • The representation of the real-world
    transformations (behavior) must be in compliance
    with the consistency and integrity
    characteristics of any data model.

50
Wrap-Up The Evolution of Data Models
  • Database Models and the Internet
  • The use of the Internet as a prime business tool
    is shifting focus to database products that
    interface efficiently and easily with the
    Internet.
  • Successful Internet age databases are
    characterized by
  • Flexible, efficient, and secure Internet access.
  • Support for complex data types and relationships.
  • Seamless interfacing with multiple data sources
    and structures.
  • Simplicity of the conceptual database model.
  • An abundance of available database tools.
  • A powerful DBMS to help make the DBAs job easier.
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